隐马尔可夫状态下层次Dirichlet过程的进化聚类

Tianbing Xu, Zhongfei Zhang, Philip S. Yu, Bo Long
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引用次数: 66

摘要

进化聚类是近年来的一个研究热点,在社会网络分析中有许多重要的应用。本文在分析了近年来关于层次狄利克雷过程(HDP)和隐马尔可夫模型(HMM)的相关文献的基础上,基于所提出的无限层次隐马尔可夫状态模型(iH2MS),建立了一个将HDP与层次转移矩阵(HTM)相结合的统计模型HDP-HTM,作为该问题的有效解决方案。HDP-HTM模型在进化聚类的研究上有了很大的进步,不仅性能优于现有的文献,更重要的是它能够自动学习聚类的数量和结构,同时明确地解决了进化过程中的对应问题。广泛的评估已经证明了这种解决方案的有效性和前景,以对抗最先进的文献。
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Evolutionary Clustering by Hierarchical Dirichlet Process with Hidden Markov State
This paper studies evolutionary clustering, which is a recently hot topic with many important applications, noticeably in social network analysis. In this paper, based on the recent literature on Hierarchical Dirichlet Process (HDP) and Hidden Markov Model (HMM), we have developed a statistical model HDP-HTM that combines HDP with a Hierarchical Transition Matrix (HTM) based on the proposed Infinite Hierarchical Hidden Markov State model (iH2MS) as an effective solution to this problem. The HDP-HTM model substantially advances the literature on evolutionary clustering in the sense that not only it performs better than the existing literature, but more importantly it is capable of automatically learning the cluster numbers and structures and at the same time explicitly addresses the correspondence issue during the evolution. Extensive evaluations have demonstrated the effectiveness and promise of this solution against the state-of-the-art literature.
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